Functional graphical modeling is gaining increasing attention in recent years. In this paper, we contribute to the literature by extending the notion of conditional Gaussian graph- ical model to a functional setting. We propose a double-penalized estimator and an efficient algorithm to recover the edge-set encoding both the conditional covariance structure of the response functions and the effects of the predictor functions on the conditional distribution.
Rita Fici, Gianluca Sottile, Luigi Augugliaro (2023). Conditional Gaussian Graphical Models for Functional Variables whit Partial Separable Operators. In Book of the Short Papers.
Conditional Gaussian Graphical Models for Functional Variables whit Partial Separable Operators
Rita Fici
;Gianluca Sottile;Luigi Augugliaro
2023-01-01
Abstract
Functional graphical modeling is gaining increasing attention in recent years. In this paper, we contribute to the literature by extending the notion of conditional Gaussian graph- ical model to a functional setting. We propose a double-penalized estimator and an efficient algorithm to recover the edge-set encoding both the conditional covariance structure of the response functions and the effects of the predictor functions on the conditional distribution.File | Dimensione | Formato | |
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